Combining Monte-Carlo simulation with heuristics for solving the inventory routing problem with stochastic demands

Fecha de publicación

2019-01-30T12:16:35Z

2019-01-30T12:16:35Z

2012-12



Resumen

In this paper, we introduce a simulation-based algorithm for solving the single-period Inventory Routing Problem (IRP) with stochastic demands. Our approach, which combines simulation with heuristics, considers different potential inventory policies for each customer, computes their associated inventory costs according to the expected demand in the period, and then estimates the marginal routing savings associated with each customer-policy entity. That way, for each customer it is possible to rank each inventory policy by estimating its total costs, i.e., both inventory and routing costs. Finally, a multi-start process is used to iteratively construct a set of promising solutions for the IRP. At each iteration of this multi-start process, a new set of policies is selected by performing an asymmetric randomization on the list of policy ranks. Some numerical experiments illustrate the potential of our approach.

Tipo de documento

Objeto de conferencia

Lengua

Inglés

Publicado por

Winter Simulation Conference (WSC). Proceedings

Documentos relacionados

Winter Simulation Conference (WSC). Proceedings, 2012

Winter Simulation Conference, Berlín, Alemanya, 9-12, desembre de 2012

https://ieeexplore.ieee.org/document/6464999

https://informs-sim.org/wsc12papers/includes/files/con168.pdf

info:eu-repo/grantAgreement/TRA2010-21644-C03

info:eu-repo/grantAgreement/CYTED2010-511RT0419

Citación recomendada

Cáceres-Cruz, J., Juan, A.A., Grasman, S., Bektas, T. & Faulin Fajardo, F.J. (2012). Combining Monte-Carlo Simulation with Heuristics for solving the Inventory Routing Problem with Stochastic Demands. Winter Simulation Conference (WSC). Proceedings, 2012(), 3114-3122. doi: 10.1109/WSC.2012.6464999

9781467347815

1558-4305

10.1109/WSC.2012.6464999

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